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首页> 外文期刊>Operations Research: The Journal of the Operations Research Society of America >On choosing parameters in retrospective-approximation algorithms for stochastic root finding and simulation optimization
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On choosing parameters in retrospective-approximation algorithms for stochastic root finding and simulation optimization

机译:追溯近似算法中用于随机寻根和仿真优化的参数选择

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The stochastic root-finding problem is that of finding a zero of a vector-valued function known only through a stochastic simulation. The simulation-optimization problem is that of locating a real-valued function's minimum, again with only a stochastic simulation that generates function estimates. Retrospective approximation (RA) is a sample-path technique for solving such problems, where the solution to the underlying problem is approached via solutions to a sequence of approximate deterministic problems, each of which is generated using a specified sample size, and solved to a specified error tolerance. Our primary focus, in this paper, is providing guidance on choosing the sequence of sample sizes and error tolerances in RA algorithms. We first present an overview of the conditions that guarantee the correct convergence of RA's iterates. Then we characterize a class of error-tolerance and sample-size sequences that are superior to others in a certain precisely defined sense. We also identify and recommend members of this class and provide a numerical example illustrating the key results.
机译:随机寻根问题是找到仅通过随机模拟才能知道的矢量值函数的零。仿真优化问题是定位实值函数的最小值的问题,同样只有生成函数估计的随机仿真。追溯近似(RA)是用于解决此类问题的一种样本路径技术,其中,通过一系列近似确定性问题的解决方案来解决基本问题,每个问题都使用指定的样本量生成,然后求解为指定的容错能力。本文的主要重点是为RA算法中选择样本大小和误差容限的顺序提供指导。我们首先介绍保证RA迭代正确收敛的条件。然后,我们描述了一类在某些精确定义的意义上优于其他类型的容错和样本大小序列。我们还将识别并推荐该课程的成员,并提供一个数字示例来说明关键结果。

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